Title
A joint segmentation and classification framework for sentence level sentiment classification
Abstract
In this paper, we propose a joint segmentation and classification framework for sentence-level sentiment classification. It is widely recognized that phrasal information is crucial for sentiment classification. However, existing sentiment classification algorithms typically split a sentence as a word sequence, which does not effectively handle the inconsistent sentiment polarity between a phrase and the words it contains, such as {\"not bad,\" \"bad\"} and {\"a great deal of,\" \"great\"}. We address this issue by developing a joint framework for sentence-level sentiment classification. It simultaneously generates useful segmentations and predicts sentence-level polarity based on the segmentation results. Specifically, we develop a candidate generation model to produce segmentation candidates of a sentence; a segmentation ranking model to score the usefulness of a segmentation candidate for sentiment classification; and a classification model for predicting the sentiment polarity of a segmentation. We train the joint framework directly from sentences annotated with only sentiment polarity, without using any syntactic or sentiment annotations in segmentation level. We conduct experiments for sentiment classification on two benchmark datasets: a tweet dataset and a review dataset. Experimental results show that: 1) our method performs comparably with state-of-the-art methods on both datasets; 2) joint modeling segmentation and classification outperforms pipelined baseline methods in various experimental settings.
Year
DOI
Venue
2015
10.1109/TASLP.2015.2449071
IEEE/ACM Trans. Audio, Speech & Language Processing
Keywords
Field
DocType
Joints,Training,Predictive models,Feature extraction,Syntactics,Sentiment analysis,Classification algorithms
Pattern recognition,Ranking,Sentiment analysis,Segmentation,Computer science,Phrase,Feature extraction,Artificial intelligence,Natural language processing,Statistical classification,Sentence,Syntax
Journal
Volume
Issue
ISSN
23
11
2329-9290
Citations 
PageRank 
References 
19
0.59
57
Authors
6
Name
Order
Citations
PageRank
Duyu Tang188336.98
Bing Qin2107672.82
Furu Wei31956107.57
Li Dong458231.86
Ting Liu52735232.31
Ming Zhou64262251.74